Search results for "inland navigation"

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Deep Learning-Based Real-Time Object Detection in Inland Navigation

2019

International audience; Semi-autonomous and fully-autonomous systems must have knowledge about the objects in their environment to ensure a safe navigation. Modern approaches implement deep learning techniques to train a neural network for object detection. This project will study the effectiveness of using several promising algorithms such as Faster R-CNN, SSD, and different versions of YOLO, to detect, classify, and track objects in near real-time fluvial domain. Since no dataset is available for this purpose in literature, we first started by annotating a dataset of 2488 images with almost 35 400 annotations for training the convolutional neural network architectures. We made this data s…

Computer scienceObject detection02 engineering and technologyMachine learningcomputer.software_genreConvolutional neural networkDomain (software engineering)[SPI]Engineering Sciences [physics]0502 economics and businessMachine learning0202 electrical engineering electronic engineering information engineeringTrainingInland navigationAdaptation (computer science)050210 logistics & transportationArtificial neural networkbusiness.industryDeep learning05 social sciencesData modelsObject detectionNavigationRoadsData set020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerNeural networks
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Kasvavan liikenteen kannattava kanava : Saimaan kanavan rahtiliikenne autonomian aikana

2013

kanavaliikennetimber tradelaivaliikennemodernising process of Eastern FinlandpuukauppasteamshipsvesikuljetusSaimaan kanavasahatavaraSaimaa Canalkannattavuusinland navigationgrain tradeautonomian aikaItä-Suomicargo boatsbargesviljakauppaSuomikanavatviljacargo transportuudenaikaistuminentavaraliikennevesikulkuneuvot
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